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The Application of Neural Network in Recognition of Fabric Weave Parameters

The Application of Neural Network in Recognition of Fabric Weave Parameters
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摘要 This paper describes a new method to identify the type of fabric weave by using a neural network classifier. The characteristic parameters of the input layer, derived from fabric image, are composed of the Markov random field character, the difference between the maximum and the minimum of gray level projections in weft and warp directions, the area ratio of the brightness region to the total area in image, the weft and the warp yarn count. The experimental results show that the neural network classifier can effectively classify fabric weave with 98.33% of accuracy, which is helpful in the recognition of fabric weave parameters. This paper describes a new method to identify the type of fabric weave by using a neural network classifier. The characteristic parameters of the input layer, derived from fabric image, are composed of the Markov random field character, the difference between the maximum and the minimum of gray level projections in weft and warp directions, the area ratio of the brightness region to the total area in image, the weft and the warp yarn count. The experimental results show that the neural network classifier can effectively classify fabric weave with 98.33% of accuracy, which is helpful in the recognition of fabric weave parameters.
出处 《Journal of Donghua University(English Edition)》 EI CAS 2004年第3期94-97,共4页 东华大学学报(英文版)
关键词 神经网络 织物编织参数 质地特征 后繁衍算法 neural network, texture character, Back Propagation algorithm
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